Literature DB >> 8446807

A comprehensive algorithm for determining whether a run-in strategy will be a cost-effective design modification in a randomized clinical trial.

K B Schechtman1, M E Gordon.   

Abstract

In randomized clinical trials, poor compliance and treatment intolerance lead to reduced between-group differences, increased sample size requirements, and increased cost. A run-in strategy is intended to reduce these problems. In this paper, we develop a comprehensive set of measures specifically sensitive to the effect of a run-in on cost and sample size requirements, both before and after randomization. Using these measures, we describe a step-by-step algorithm through which one can estimate the cost-effectiveness of a potential run-in. Because the cost-effectiveness of a run-in is partly mediated by its effect on sample size, we begin by discussing the likely impact of a planned run-in on the required number of randomized, eligible, and screened subjects. Run-in strategies are most likely to be cost-effective when: (1) per patient costs during the post-randomization as compared to the screening period are high; (2) poor compliance is associated with a substantial reduction in response to treatment; (3) the number of screened patients needed to identify a single eligible patient is small; (4) the run-in is inexpensive; (5) for most patients, the run-in compliance status is maintained following randomization and, most importantly, (6) many subjects excluded by the run-in are treatment intolerant or non-compliant to the extent that we expect little or no treatment response. Our analysis suggests that conditions for the cost-effectiveness of run-in strategies are stringent. In particular, if the only purpose of a run-in is to exclude ordinary partial compliers, the run-in will frequently add to the cost of the trial. Often, the cost-effectiveness of a run-in requires that one can identify and exclude a substantial number of treatment intolerant or otherwise unresponsive subjects.

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Year:  1993        PMID: 8446807     DOI: 10.1002/sim.4780120204

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  2 in total

1.  Effectiveness of "run-ins" at predicting adherence in a behavioral weight loss efficacy trial.

Authors:  Tricia M Leahey; Loneke T Blackman Carr; Zeely Denmat; Denise Fernandes; Amy A Gorin
Journal:  Contemp Clin Trials       Date:  2022-01-08       Impact factor: 2.226

Review 2.  Run-in periods and clinical outcomes of antipsychotics in dementia: A meta-epidemiological study of placebo-controlled trials.

Authors:  Tessa A Hulshof; Sytse U Zuidema; Christine C Gispen-de Wied; Hendrika J Luijendijk
Journal:  Pharmacoepidemiol Drug Saf       Date:  2019-11-15       Impact factor: 2.890

  2 in total

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